Fuzzy Logic Weight Based Charging Scheme for Optimal Distribution of Charging Power among Electric Vehicles in a Parking Lot
Abstract
:1. Introduction
- The requirements of EV owners and the power grid are identified, and a charging scheme based on a fuzzy inference mechanism for EVs in the parking lot is developed with the aim to maximize the QoP under the bounded constraints of the power grid;
- The problem is formulated with an objective function and solved through the fuzzy logic inference mechanism. Among the different parameters, three of the most relevant parameters (i.e., the required SoC, remaining parking duration and available power) that influence the QoP are selected to model the fuzzy logic inference mechanism;
- The developed fuzzy inference mechanism correlates the required SoC, remaining parking duration and available power in real time and compute weight values for each of the EVs requesting for the charging operations. Once the weight values for each of the competing EVs are known, their charging operations are controlled, and the available power is distributed among the optimal number of charging EVs;
- An algorithm for FLWCS is developed and applied to a parking lot with different parking capacities. The performance of the algorithm is validated against the FCFS-based scheme and the results are verified in terms of QoP.
2. Literature Review
3. Proposed Fuzzy Logic Weight Based Charging Scheme
3.1. System Model of the Proposed FLWCS
- Data aggregation and CS allocation: The EV owners are expected to provide their information such as arrival time, departure time and SoC to the parking lot controller upon their arrival. The information is initially processed and any of the available CSs are allocated to the newly arrived EVs. The FLWCS manages and controls the charging operations of all the connected EVs in each scheduling period and requires the status of the CSs and the BL information in real time. It is envisioned that a bidirectional communication network is established between each of the CSs and the parking lot controller, and smart meters installed at the CSs are used to detect the status (charging/idle) and measure the amount of energy consumption for the connected EVs [29]. The power consumption of the residential and commercial buildings connected to the low-voltage distribution system is measured through the advanced metering infrastructures (AMI) installed at the customer’s premises and the BL is updated to the DSO and the parking lot controller through a wide area network [30].
- Fuzzy logic controller: The charging scheduling problem in this work is for a sizeable public parking lot which represents a significant charging load if all the EVs are charged simultaneously in the current time slot. Based on the EV owner’s behaviors, EVs are classified into a routine and non-routine EVs [31]. The routine represents the EVs commuting on a daily basis between the home and workplaces and EVs are parking during the duty hours. The non-routine are the EVs which can be parked for a long or short duration depending on the type of their owners activities such as visiting a shopping mall, theaters, an appointment with a doctor or other social events [32]. Depending on the type of EVs in the parking lot, the operational data of EVs and the current status of the power grid play an important role in the fuzzy logic controller. The operational data of each of the EV in the set of EVs () (including required SoC and RPD and the amount of available power (AP) computed through the BL obtained in real time (t) are the inputs to the fuzzy logic controller. The developed fuzzy inference mechanism evaluates the required SoC, the remaining parking duration and the available power and computes weight values normalized in [0, 1] range for the EVs in each time slot.
- Charging control and power distribution: Considering the weight values obtained through the fuzzy inference mechanism (according to the updated status of the power grid and the EVs information), the number of charging operations is controlled, and the power is distributed among the most appropriate EVs. The current status of the CSs and the updated SoC (power consumption) of each the EVs are measured and reported for consideration in the next scheduling period. The process is repeated during the parking operational hours and the optimized power consumption and the QoE for each of the EVs are recorded in each of the scheduling periods.
3.2. Problem Formulation and Objective Function
3.3. Fuzzy Logic Inference Mechanism
- Triangular membership function: A triangular membership function reflects the shape of a triangle and can be defined by three parameters a, b and m such that a < m < b, as given in Equation (24) [37].
- Left-Right open shoulder trapezoidal membership function: The left–right open membership functions can be defined by two parameters a and b and graphically represented by ⅂ & Γ symbols and the functions can be written as Equations (25) and (26).
- Trapezoidal membership function: The trapezoidal membership function resembles a trapezoidal shape and can be defined by four parameters a, b, c and d. The parameters a and d defines the abscissa of two vertices at the bottom while the parameters b and c denotes the abscissa of the two vertices at the top of the trapezoidal [37]. Mathematically, it can be expressed as Equation (27).
3.3.1. Fuzzification of Crisp Inputs and Their Fuzzy Membership Functions
3.3.2. Fuzzy Inference Mechanism for Obtaining the Fuzzified Weight Variable
3.3.3. Defuzzification for Obtaining the Crisp Weight Variable
3.4. Flowchart of the Proposed Algorithm
4. Simulation Results and Discussion
5. Conclusions
- Research limitations:
- Research Implications:
Author Contributions
Funding
Conflicts of Interest
References
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Fuzzy Sets | Type of MF | Arguments (Time Slots) |
---|---|---|
SD | Left open shoulder | a = 4, b = 8 |
AD | Trapezoidal | a = 4, b = 8, c = 16, d = 20 |
LD | Right open shoulder | a = 16, b = 20 |
Fuzzy Sets | Type of MF | Arguments (%) |
---|---|---|
VL | Left open shoulder | a = 0.1, b = 0.3 |
L | Triangular | a = 0.1, m = 0.3, b = 0.5 |
M | Triangular | a = 0.3, m = 0.5, b = 0.7 |
H | Triangular | a = 0.5, m = 0.7, b = 0.9 |
VH | Right open shoulder | a = 0.7, b = 0.9 |
Fuzzy Sets | Type of MF | Arguments (kW) |
---|---|---|
VLAP | Left open shoulder | a = 10, b = 30 |
LAP | Triangular | a = 10, m =30, b = 50 |
MAP | Triangular | a = 30, m = 50, b = 70 |
HAP | Triangular | a = 50, m = 70, b = 90 |
VHAP | Right open shoulder | a = 70, b = 90 |
Fuzzy Sets | Type of MF | Arguments (%) |
---|---|---|
LPF | Left open shoulder | a = 0.2, b = 0.4 |
APF | Triangular | a =0.2, b = 0.4, c = 0.6, d = 0.8 |
HPF | Right open shoulder | a = 0.6, b = 0.8 |
AP | ||||||
---|---|---|---|---|---|---|
VLAP | LAP | MAP | HAP | VHAP | ||
VL | LW | LW | LW | LW | MW | |
L | LW | LW | MW | MW | MW | |
M | LW | MW | MW | MW | HW | |
H | MW | AW | HW | HW | HW | |
VH | HW | HW | HW | HW | HW |
AP | ||||||
---|---|---|---|---|---|---|
VLAP | LAP | MAP | HAP | VHAP | ||
VL | LW | LW | LW | MW | MW | |
L | LW | LW | MW | MW | MW | |
M | LW | LW | HW | HW | HW | |
H | MW | HW | HW | HW | HW | |
VH | MW | HW | HW | HW | HW |
AP | ||||||
---|---|---|---|---|---|---|
VLAP | LAP | MAP | HAP | VHAP | ||
VL | LW | LW | LW | LW | MW | |
L | LW | LW | LW | MW | MW | |
M | LW | LW | MW | MW | MW | |
H | LW | LW | HW | HW | HW | |
VH | MW | HW | HW | HW | HW |
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Hussain, S.; Ahmed, M.A.; Lee, K.-B.; Kim, Y.-C. Fuzzy Logic Weight Based Charging Scheme for Optimal Distribution of Charging Power among Electric Vehicles in a Parking Lot. Energies 2020, 13, 3119. https://doi.org/10.3390/en13123119
Hussain S, Ahmed MA, Lee K-B, Kim Y-C. Fuzzy Logic Weight Based Charging Scheme for Optimal Distribution of Charging Power among Electric Vehicles in a Parking Lot. Energies. 2020; 13(12):3119. https://doi.org/10.3390/en13123119
Chicago/Turabian StyleHussain, Shahid, Mohamed A. Ahmed, Ki-Beom Lee, and Young-Chon Kim. 2020. "Fuzzy Logic Weight Based Charging Scheme for Optimal Distribution of Charging Power among Electric Vehicles in a Parking Lot" Energies 13, no. 12: 3119. https://doi.org/10.3390/en13123119